1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
768
769
770
771
772
773
774
775
776
777
778
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
923
924
925
926
927
928
929
930
931
932
933
934
935
936
937
938
939
940
941
942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960
961
962
963
964
965
966
967
968
969
970
971
972
973
974
975
976
977
978
979
980
981
982
983
984
985
986
987
988
989
990
991
992
993
994
995
996
997
998
999
1000
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013
1014
1015
1016
1017
1018
1019
1020
1021
1022
1023
1024
1025
1026
1027
1028
1029
1030
1031
1032
1033
1034
1035
1036
1037
1038
1039
1040
1041
1042
1043
1044
1045
1046
1047
1048
1049
1050
1051
1052
1053
1054
1055
1056
1057
1058
1059
1060
1061
1062
1063
1064
1065
1066
1067
1068
1069
1070
1071
1072
1073
1074
1075
1076
1077
1078
1079
1080
1081
1082
1083
1084
1085
1086
1087
1088
1089
1090
1091
1092
1093
1094
1095
1096
1097
1098
1099
1100
1101
1102
1103
1104
1105
1106
1107
1108
1109
1110
1111
1112
1113
1114
1115
1116
1117
1118
1119
1120
1121
1122
1123
1124
1125
1126
1127
1128
1129
1130
1131
1132
1133
1134
1135
1136
1137
1138
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
1154
1155
1156
1157
1158
1159
1160
1161
1162
1163
1164
1165
1166
1167
1168
1169
1170
1171
1172
1173
1174
1175
1176
1177
1178
1179
1180
1181
1182
1183
1184
1185
1186
1187
1188
1189
1190
1191
1192
1193
1194
1195
1196
1197
1198
1199
1200
1201
1202
1203
1204
1205
1206
1207
1208
1209
1210
1211
1212
1213
1214
1215
1216
1217
1218
1219
1220
1221
1222
1223
1224
1225
1226
1227
1228
1229
1230
1231
1232
1233
1234
1235
1236
1237
1238
1239
1240
1241
1242
1243
1244
1245
1246
1247
1248
1249
1250
1251
1252
1253
1254
1255
1256
1257
1258
1259
1260
1261
1262
1263
1264
1265
1266
1267
1268
1269
1270
1271
1272
1273
1274
1275
1276
1277
1278
1279
1280
1281
1282
1283
1284
1285
1286
1287
1288
1289
1290
1291
1292
1293
1294
1295
1296
1297
1298
1299
1300
1301
1302
1303
1304
1305
1306
1307
1308
1309
1310
1311
1312
1313
1314
1315
1316
1317
1318
1319
1320
1321
1322
1323
1324
1325
1326
1327
1328
1329
1330
1331
1332
1333
1334
1335
1336
1337
1338
1339
1340
1341
1342
1343
1344
1345
1346
1347
1348
1349
1350
1351
1352
1353
1354
1355
1356
1357
1358
1359
1360
1361
1362
1363
1364
1365
1366
1367
1368
1369
1370
1371
1372
1373
1374
1375
1376
1377
1378
1379
1380
1381
1382
1383
1384
1385
1386
1387
1388
1389
1390
1391
1392
1393
1394
1395
1396
1397
1398
1399
1400
1401
1402
1403
1404
1405
1406
1407
1408
1409
1410
1411
1412
1413
1414
1415
1416
1417
1418
1419
1420
1421
1422
1423
1424
1425
1426
1427
1428
1429
1430
1431
1432
1433
1434
1435
1436
1437
1438
1439
1440
1441
1442
1443
1444
1445
1446
1447
1448
1449
1450
1451
1452
1453
1454
1455
1456
1457
1458
1459
1460
1461
1462
1463
1464
1465
1466
1467
1468
1469
1470
1471
1472
1473
1474
1475
1476
1477
1478
1479
1480
1481
1482
1483
1484
1485
1486
1487
1488
1489
1490
1491
1492
1493
1494
1495
1496
1497
1498
1499
1500
1501
1502
1503
1504
1505
1506
1507
1508
1509
1510
1511
1512
1513
1514
1515
1516
1517
1518
1519
1520
1521
1522
1523
1524
1525
1526
1527
1528
1529
1530
1531
1532
1533
1534
1535
1536
1537
1538
1539
1540
1541
1542
1543
1544
1545
1546
1547
1548
1549
1550
1551
1552
1553
1554
1555
1556
1557
1558
1559
1560
1561
1562
1563
1564
1565
1566
1567
1568
1569
1570
1571
1572
1573
1574
1575
1576
1577
1578
1579
1580
1581
1582
1583
1584
1585
1586
1587
1588
1589
1590
1591
1592
1593
1594
1595
1596
1597
1598
1599
1600
1601
1602
1603
1604
1605
1606
1607
1608
1609
1610
1611
1612
1613
1614
1615
1616
1617
1618
1619
1620
1621
1622
1623
1624
1625
1626
1627
1628
1629
1630
1631
1632
1633
1634
1635
1636
1637
1638
1639
1640
1641
1642
1643
1644
1645
1646
1647
1648
1649
1650
1651
1652
1653
1654
1655
1656
1657
1658
1659
1660
1661
1662
1663
1664
1665
1666
1667
1668
1669
1670
1671
1672
1673
1674
1675
1676
1677
1678
1679
1680
1681
1682
1683
1684
1685
1686
1687
1688
1689
1690
|
/*M///////////////////////////////////////////////////////////////////////////////////////
//
// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
//
// By downloading, copying, installing or using the software you agree to this license.
// If you do not agree to this license, do not download, install,
// copy or use the software.
//
//
// License Agreement
// For Open Source Computer Vision Library
//
// Copyright (C) 2000, Intel Corporation, all rights reserved.
// Copyright (C) 2013, OpenCV Foundation, all rights reserved.
// Copyright (C) 2014, Itseez Inc, all rights reserved.
// Third party copyrights are property of their respective owners.
//
// Redistribution and use in source and binary forms, with or without modification,
// are permitted provided that the following conditions are met:
//
// * Redistribution's of source code must retain the above copyright notice,
// this list of conditions and the following disclaimer.
//
// * Redistribution's in binary form must reproduce the above copyright notice,
// this list of conditions and the following disclaimer in the documentation
// and/or other materials provided with the distribution.
//
// * The name of the copyright holders may not be used to endorse or promote products
// derived from this software without specific prior written permission.
//
// This software is provided by the copyright holders and contributors "as is" and
// any express or implied warranties, including, but not limited to, the implied
// warranties of merchantability and fitness for a particular purpose are disclaimed.
// In no event shall the Intel Corporation or contributors be liable for any direct,
// indirect, incidental, special, exemplary, or consequential damages
// (including, but not limited to, procurement of substitute goods or services;
// loss of use, data, or profits; or business interruption) however caused
// and on any theory of liability, whether in contract, strict liability,
// or tort (including negligence or otherwise) arising in any way out of
// the use of this software, even if advised of the possibility of such damage.
//
//M*/
#ifndef OPENCV_ML_HPP
#define OPENCV_ML_HPP
#ifdef __cplusplus
# include "opencv2/core.hpp"
#endif
#ifdef __cplusplus
#include <float.h>
#include <map>
#include <iostream>
/**
@defgroup ml Machine Learning
The Machine Learning Library (MLL) is a set of classes and functions for statistical
classification, regression, and clustering of data.
Most of the classification and regression algorithms are implemented as C++ classes. As the
algorithms have different sets of features (like an ability to handle missing measurements or
categorical input variables), there is a little common ground between the classes. This common
ground is defined by the class cv::ml::StatModel that all the other ML classes are derived from.
See detailed overview here: @ref ml_intro.
*/
namespace cv
{
namespace ml
{
//! @addtogroup ml
//! @{
/** @brief Variable types */
enum VariableTypes
{
VAR_NUMERICAL =0, //!< same as VAR_ORDERED
VAR_ORDERED =0, //!< ordered variables
VAR_CATEGORICAL =1 //!< categorical variables
};
/** @brief %Error types */
enum ErrorTypes
{
TEST_ERROR = 0,
TRAIN_ERROR = 1
};
/** @brief Sample types */
enum SampleTypes
{
ROW_SAMPLE = 0, //!< each training sample is a row of samples
COL_SAMPLE = 1 //!< each training sample occupies a column of samples
};
/** @brief The structure represents the logarithmic grid range of statmodel parameters.
It is used for optimizing statmodel accuracy by varying model parameters, the accuracy estimate
being computed by cross-validation.
*/
class CV_EXPORTS ParamGrid
{
public:
/** @brief Default constructor */
ParamGrid();
/** @brief Constructor with parameters */
ParamGrid(double _minVal, double _maxVal, double _logStep);
double minVal; //!< Minimum value of the statmodel parameter. Default value is 0.
double maxVal; //!< Maximum value of the statmodel parameter. Default value is 0.
/** @brief Logarithmic step for iterating the statmodel parameter.
The grid determines the following iteration sequence of the statmodel parameter values:
\f[(minVal, minVal*step, minVal*{step}^2, \dots, minVal*{logStep}^n),\f]
where \f$n\f$ is the maximal index satisfying
\f[\texttt{minVal} * \texttt{logStep} ^n < \texttt{maxVal}\f]
The grid is logarithmic, so logStep must always be greater then 1. Default value is 1.
*/
double logStep;
};
/** @brief Class encapsulating training data.
Please note that the class only specifies the interface of training data, but not implementation.
All the statistical model classes in _ml_ module accepts Ptr\<TrainData\> as parameter. In other
words, you can create your own class derived from TrainData and pass smart pointer to the instance
of this class into StatModel::train.
@sa @ref ml_intro_data
*/
class CV_EXPORTS_W TrainData
{
public:
static inline float missingValue() { return FLT_MAX; }
virtual ~TrainData();
CV_WRAP virtual int getLayout() const = 0;
CV_WRAP virtual int getNTrainSamples() const = 0;
CV_WRAP virtual int getNTestSamples() const = 0;
CV_WRAP virtual int getNSamples() const = 0;
CV_WRAP virtual int getNVars() const = 0;
CV_WRAP virtual int getNAllVars() const = 0;
CV_WRAP virtual void getSample(InputArray varIdx, int sidx, float* buf) const = 0;
CV_WRAP virtual Mat getSamples() const = 0;
CV_WRAP virtual Mat getMissing() const = 0;
/** @brief Returns matrix of train samples
@param layout The requested layout. If it's different from the initial one, the matrix is
transposed. See ml::SampleTypes.
@param compressSamples if true, the function returns only the training samples (specified by
sampleIdx)
@param compressVars if true, the function returns the shorter training samples, containing only
the active variables.
In current implementation the function tries to avoid physical data copying and returns the
matrix stored inside TrainData (unless the transposition or compression is needed).
*/
CV_WRAP virtual Mat getTrainSamples(int layout=ROW_SAMPLE,
bool compressSamples=true,
bool compressVars=true) const = 0;
/** @brief Returns the vector of responses
The function returns ordered or the original categorical responses. Usually it's used in
regression algorithms.
*/
CV_WRAP virtual Mat getTrainResponses() const = 0;
/** @brief Returns the vector of normalized categorical responses
The function returns vector of responses. Each response is integer from `0` to `<number of
classes>-1`. The actual label value can be retrieved then from the class label vector, see
TrainData::getClassLabels.
*/
CV_WRAP virtual Mat getTrainNormCatResponses() const = 0;
CV_WRAP virtual Mat getTestResponses() const = 0;
CV_WRAP virtual Mat getTestNormCatResponses() const = 0;
CV_WRAP virtual Mat getResponses() const = 0;
CV_WRAP virtual Mat getNormCatResponses() const = 0;
CV_WRAP virtual Mat getSampleWeights() const = 0;
CV_WRAP virtual Mat getTrainSampleWeights() const = 0;
CV_WRAP virtual Mat getTestSampleWeights() const = 0;
CV_WRAP virtual Mat getVarIdx() const = 0;
CV_WRAP virtual Mat getVarType() const = 0;
CV_WRAP Mat getVarSymbolFlags() const;
CV_WRAP virtual int getResponseType() const = 0;
CV_WRAP virtual Mat getTrainSampleIdx() const = 0;
CV_WRAP virtual Mat getTestSampleIdx() const = 0;
CV_WRAP virtual void getValues(int vi, InputArray sidx, float* values) const = 0;
virtual void getNormCatValues(int vi, InputArray sidx, int* values) const = 0;
CV_WRAP virtual Mat getDefaultSubstValues() const = 0;
CV_WRAP virtual int getCatCount(int vi) const = 0;
/** @brief Returns the vector of class labels
The function returns vector of unique labels occurred in the responses.
*/
CV_WRAP virtual Mat getClassLabels() const = 0;
CV_WRAP virtual Mat getCatOfs() const = 0;
CV_WRAP virtual Mat getCatMap() const = 0;
/** @brief Splits the training data into the training and test parts
@sa TrainData::setTrainTestSplitRatio
*/
CV_WRAP virtual void setTrainTestSplit(int count, bool shuffle=true) = 0;
/** @brief Splits the training data into the training and test parts
The function selects a subset of specified relative size and then returns it as the training
set. If the function is not called, all the data is used for training. Please, note that for
each of TrainData::getTrain\* there is corresponding TrainData::getTest\*, so that the test
subset can be retrieved and processed as well.
@sa TrainData::setTrainTestSplit
*/
CV_WRAP virtual void setTrainTestSplitRatio(double ratio, bool shuffle=true) = 0;
CV_WRAP virtual void shuffleTrainTest() = 0;
/** @brief Returns matrix of test samples */
CV_WRAP Mat getTestSamples() const;
/** @brief Returns vector of symbolic names captured in loadFromCSV() */
CV_WRAP void getNames(std::vector<String>& names) const;
CV_WRAP static Mat getSubVector(const Mat& vec, const Mat& idx);
/** @brief Reads the dataset from a .csv file and returns the ready-to-use training data.
@param filename The input file name
@param headerLineCount The number of lines in the beginning to skip; besides the header, the
function also skips empty lines and lines staring with `#`
@param responseStartIdx Index of the first output variable. If -1, the function considers the
last variable as the response
@param responseEndIdx Index of the last output variable + 1. If -1, then there is single
response variable at responseStartIdx.
@param varTypeSpec The optional text string that specifies the variables' types. It has the
format `ord[n1-n2,n3,n4-n5,...]cat[n6,n7-n8,...]`. That is, variables from `n1 to n2`
(inclusive range), `n3`, `n4 to n5` ... are considered ordered and `n6`, `n7 to n8` ... are
considered as categorical. The range `[n1..n2] + [n3] + [n4..n5] + ... + [n6] + [n7..n8]`
should cover all the variables. If varTypeSpec is not specified, then algorithm uses the
following rules:
- all input variables are considered ordered by default. If some column contains has non-
numerical values, e.g. 'apple', 'pear', 'apple', 'apple', 'mango', the corresponding
variable is considered categorical.
- if there are several output variables, they are all considered as ordered. Error is
reported when non-numerical values are used.
- if there is a single output variable, then if its values are non-numerical or are all
integers, then it's considered categorical. Otherwise, it's considered ordered.
@param delimiter The character used to separate values in each line.
@param missch The character used to specify missing measurements. It should not be a digit.
Although it's a non-numerical value, it surely does not affect the decision of whether the
variable ordered or categorical.
@note If the dataset only contains input variables and no responses, use responseStartIdx = -2
and responseEndIdx = 0. The output variables vector will just contain zeros.
*/
static Ptr<TrainData> loadFromCSV(const String& filename,
int headerLineCount,
int responseStartIdx=-1,
int responseEndIdx=-1,
const String& varTypeSpec=String(),
char delimiter=',',
char missch='?');
/** @brief Creates training data from in-memory arrays.
@param samples matrix of samples. It should have CV_32F type.
@param layout see ml::SampleTypes.
@param responses matrix of responses. If the responses are scalar, they should be stored as a
single row or as a single column. The matrix should have type CV_32F or CV_32S (in the
former case the responses are considered as ordered by default; in the latter case - as
categorical)
@param varIdx vector specifying which variables to use for training. It can be an integer vector
(CV_32S) containing 0-based variable indices or byte vector (CV_8U) containing a mask of
active variables.
@param sampleIdx vector specifying which samples to use for training. It can be an integer
vector (CV_32S) containing 0-based sample indices or byte vector (CV_8U) containing a mask
of training samples.
@param sampleWeights optional vector with weights for each sample. It should have CV_32F type.
@param varType optional vector of type CV_8U and size `<number_of_variables_in_samples> +
<number_of_variables_in_responses>`, containing types of each input and output variable. See
ml::VariableTypes.
*/
CV_WRAP static Ptr<TrainData> create(InputArray samples, int layout, InputArray responses,
InputArray varIdx=noArray(), InputArray sampleIdx=noArray(),
InputArray sampleWeights=noArray(), InputArray varType=noArray());
};
/** @brief Base class for statistical models in OpenCV ML.
*/
class CV_EXPORTS_W StatModel : public Algorithm
{
public:
/** Predict options */
enum Flags {
UPDATE_MODEL = 1,
RAW_OUTPUT=1, //!< makes the method return the raw results (the sum), not the class label
COMPRESSED_INPUT=2,
PREPROCESSED_INPUT=4
};
/** @brief Returns the number of variables in training samples */
CV_WRAP virtual int getVarCount() const = 0;
CV_WRAP virtual bool empty() const;
/** @brief Returns true if the model is trained */
CV_WRAP virtual bool isTrained() const = 0;
/** @brief Returns true if the model is classifier */
CV_WRAP virtual bool isClassifier() const = 0;
/** @brief Trains the statistical model
@param trainData training data that can be loaded from file using TrainData::loadFromCSV or
created with TrainData::create.
@param flags optional flags, depending on the model. Some of the models can be updated with the
new training samples, not completely overwritten (such as NormalBayesClassifier or ANN_MLP).
*/
CV_WRAP virtual bool train( const Ptr<TrainData>& trainData, int flags=0 );
/** @brief Trains the statistical model
@param samples training samples
@param layout See ml::SampleTypes.
@param responses vector of responses associated with the training samples.
*/
CV_WRAP virtual bool train( InputArray samples, int layout, InputArray responses );
/** @brief Computes error on the training or test dataset
@param data the training data
@param test if true, the error is computed over the test subset of the data, otherwise it's
computed over the training subset of the data. Please note that if you loaded a completely
different dataset to evaluate already trained classifier, you will probably want not to set
the test subset at all with TrainData::setTrainTestSplitRatio and specify test=false, so
that the error is computed for the whole new set. Yes, this sounds a bit confusing.
@param resp the optional output responses.
The method uses StatModel::predict to compute the error. For regression models the error is
computed as RMS, for classifiers - as a percent of missclassified samples (0%-100%).
*/
CV_WRAP virtual float calcError( const Ptr<TrainData>& data, bool test, OutputArray resp ) const;
/** @brief Predicts response(s) for the provided sample(s)
@param samples The input samples, floating-point matrix
@param results The optional output matrix of results.
@param flags The optional flags, model-dependent. See cv::ml::StatModel::Flags.
*/
CV_WRAP virtual float predict( InputArray samples, OutputArray results=noArray(), int flags=0 ) const = 0;
/** @brief Create and train model with default parameters
The class must implement static `create()` method with no parameters or with all default parameter values
*/
template<typename _Tp> static Ptr<_Tp> train(const Ptr<TrainData>& data, int flags=0)
{
Ptr<_Tp> model = _Tp::create();
return !model.empty() && model->train(data, flags) ? model : Ptr<_Tp>();
}
};
/****************************************************************************************\
* Normal Bayes Classifier *
\****************************************************************************************/
/** @brief Bayes classifier for normally distributed data.
@sa @ref ml_intro_bayes
*/
class CV_EXPORTS_W NormalBayesClassifier : public StatModel
{
public:
/** @brief Predicts the response for sample(s).
The method estimates the most probable classes for input vectors. Input vectors (one or more)
are stored as rows of the matrix inputs. In case of multiple input vectors, there should be one
output vector outputs. The predicted class for a single input vector is returned by the method.
The vector outputProbs contains the output probabilities corresponding to each element of
result.
*/
CV_WRAP virtual float predictProb( InputArray inputs, OutputArray outputs,
OutputArray outputProbs, int flags=0 ) const = 0;
/** Creates empty model
Use StatModel::train to train the model after creation. */
CV_WRAP static Ptr<NormalBayesClassifier> create();
};
/****************************************************************************************\
* K-Nearest Neighbour Classifier *
\****************************************************************************************/
/** @brief The class implements K-Nearest Neighbors model
@sa @ref ml_intro_knn
*/
class CV_EXPORTS_W KNearest : public StatModel
{
public:
/** Default number of neighbors to use in predict method. */
/** @see setDefaultK */
CV_WRAP virtual int getDefaultK() const = 0;
/** @copybrief getDefaultK @see getDefaultK */
CV_WRAP virtual void setDefaultK(int val) = 0;
/** Whether classification or regression model should be trained. */
/** @see setIsClassifier */
CV_WRAP virtual bool getIsClassifier() const = 0;
/** @copybrief getIsClassifier @see getIsClassifier */
CV_WRAP virtual void setIsClassifier(bool val) = 0;
/** Parameter for KDTree implementation. */
/** @see setEmax */
CV_WRAP virtual int getEmax() const = 0;
/** @copybrief getEmax @see getEmax */
CV_WRAP virtual void setEmax(int val) = 0;
/** %Algorithm type, one of KNearest::Types. */
/** @see setAlgorithmType */
CV_WRAP virtual int getAlgorithmType() const = 0;
/** @copybrief getAlgorithmType @see getAlgorithmType */
CV_WRAP virtual void setAlgorithmType(int val) = 0;
/** @brief Finds the neighbors and predicts responses for input vectors.
@param samples Input samples stored by rows. It is a single-precision floating-point matrix of
`<number_of_samples> * k` size.
@param k Number of used nearest neighbors. Should be greater than 1.
@param results Vector with results of prediction (regression or classification) for each input
sample. It is a single-precision floating-point vector with `<number_of_samples>` elements.
@param neighborResponses Optional output values for corresponding neighbors. It is a single-
precision floating-point matrix of `<number_of_samples> * k` size.
@param dist Optional output distances from the input vectors to the corresponding neighbors. It
is a single-precision floating-point matrix of `<number_of_samples> * k` size.
For each input vector (a row of the matrix samples), the method finds the k nearest neighbors.
In case of regression, the predicted result is a mean value of the particular vector's neighbor
responses. In case of classification, the class is determined by voting.
For each input vector, the neighbors are sorted by their distances to the vector.
In case of C++ interface you can use output pointers to empty matrices and the function will
allocate memory itself.
If only a single input vector is passed, all output matrices are optional and the predicted
value is returned by the method.
The function is parallelized with the TBB library.
*/
CV_WRAP virtual float findNearest( InputArray samples, int k,
OutputArray results,
OutputArray neighborResponses=noArray(),
OutputArray dist=noArray() ) const = 0;
/** @brief Implementations of KNearest algorithm
*/
enum Types
{
BRUTE_FORCE=1,
KDTREE=2
};
/** @brief Creates the empty model
The static method creates empty %KNearest classifier. It should be then trained using StatModel::train method.
*/
CV_WRAP static Ptr<KNearest> create();
};
/****************************************************************************************\
* Support Vector Machines *
\****************************************************************************************/
/** @brief Support Vector Machines.
@sa @ref ml_intro_svm
*/
class CV_EXPORTS_W SVM : public StatModel
{
public:
class CV_EXPORTS Kernel : public Algorithm
{
public:
virtual int getType() const = 0;
virtual void calc( int vcount, int n, const float* vecs, const float* another, float* results ) = 0;
};
/** Type of a %SVM formulation.
See SVM::Types. Default value is SVM::C_SVC. */
/** @see setType */
CV_WRAP virtual int getType() const = 0;
/** @copybrief getType @see getType */
CV_WRAP virtual void setType(int val) = 0;
/** Parameter \f$\gamma\f$ of a kernel function.
For SVM::POLY, SVM::RBF, SVM::SIGMOID or SVM::CHI2. Default value is 1. */
/** @see setGamma */
CV_WRAP virtual double getGamma() const = 0;
/** @copybrief getGamma @see getGamma */
CV_WRAP virtual void setGamma(double val) = 0;
/** Parameter _coef0_ of a kernel function.
For SVM::POLY or SVM::SIGMOID. Default value is 0.*/
/** @see setCoef0 */
CV_WRAP virtual double getCoef0() const = 0;
/** @copybrief getCoef0 @see getCoef0 */
CV_WRAP virtual void setCoef0(double val) = 0;
/** Parameter _degree_ of a kernel function.
For SVM::POLY. Default value is 0. */
/** @see setDegree */
CV_WRAP virtual double getDegree() const = 0;
/** @copybrief getDegree @see getDegree */
CV_WRAP virtual void setDegree(double val) = 0;
/** Parameter _C_ of a %SVM optimization problem.
For SVM::C_SVC, SVM::EPS_SVR or SVM::NU_SVR. Default value is 0. */
/** @see setC */
CV_WRAP virtual double getC() const = 0;
/** @copybrief getC @see getC */
CV_WRAP virtual void setC(double val) = 0;
/** Parameter \f$\nu\f$ of a %SVM optimization problem.
For SVM::NU_SVC, SVM::ONE_CLASS or SVM::NU_SVR. Default value is 0. */
/** @see setNu */
CV_WRAP virtual double getNu() const = 0;
/** @copybrief getNu @see getNu */
CV_WRAP virtual void setNu(double val) = 0;
/** Parameter \f$\epsilon\f$ of a %SVM optimization problem.
For SVM::EPS_SVR. Default value is 0. */
/** @see setP */
CV_WRAP virtual double getP() const = 0;
/** @copybrief getP @see getP */
CV_WRAP virtual void setP(double val) = 0;
/** Optional weights in the SVM::C_SVC problem, assigned to particular classes.
They are multiplied by _C_ so the parameter _C_ of class _i_ becomes `classWeights(i) * C`. Thus
these weights affect the misclassification penalty for different classes. The larger weight,
the larger penalty on misclassification of data from the corresponding class. Default value is
empty Mat. */
/** @see setClassWeights */
CV_WRAP virtual cv::Mat getClassWeights() const = 0;
/** @copybrief getClassWeights @see getClassWeights */
CV_WRAP virtual void setClassWeights(const cv::Mat &val) = 0;
/** Termination criteria of the iterative %SVM training procedure which solves a partial
case of constrained quadratic optimization problem.
You can specify tolerance and/or the maximum number of iterations. Default value is
`TermCriteria( TermCriteria::MAX_ITER + TermCriteria::EPS, 1000, FLT_EPSILON )`; */
/** @see setTermCriteria */
CV_WRAP virtual cv::TermCriteria getTermCriteria() const = 0;
/** @copybrief getTermCriteria @see getTermCriteria */
CV_WRAP virtual void setTermCriteria(const cv::TermCriteria &val) = 0;
/** Type of a %SVM kernel.
See SVM::KernelTypes. Default value is SVM::RBF. */
CV_WRAP virtual int getKernelType() const = 0;
/** Initialize with one of predefined kernels.
See SVM::KernelTypes. */
CV_WRAP virtual void setKernel(int kernelType) = 0;
/** Initialize with custom kernel.
See SVM::Kernel class for implementation details */
virtual void setCustomKernel(const Ptr<Kernel> &_kernel) = 0;
//! %SVM type
enum Types {
/** C-Support Vector Classification. n-class classification (n \f$\geq\f$ 2), allows
imperfect separation of classes with penalty multiplier C for outliers. */
C_SVC=100,
/** \f$\nu\f$-Support Vector Classification. n-class classification with possible
imperfect separation. Parameter \f$\nu\f$ (in the range 0..1, the larger the value, the smoother
the decision boundary) is used instead of C. */
NU_SVC=101,
/** Distribution Estimation (One-class %SVM). All the training data are from
the same class, %SVM builds a boundary that separates the class from the rest of the feature
space. */
ONE_CLASS=102,
/** \f$\epsilon\f$-Support Vector Regression. The distance between feature vectors
from the training set and the fitting hyper-plane must be less than p. For outliers the
penalty multiplier C is used. */
EPS_SVR=103,
/** \f$\nu\f$-Support Vector Regression. \f$\nu\f$ is used instead of p.
See @cite LibSVM for details. */
NU_SVR=104
};
/** @brief %SVM kernel type
A comparison of different kernels on the following 2D test case with four classes. Four
SVM::C_SVC SVMs have been trained (one against rest) with auto_train. Evaluation on three
different kernels (SVM::CHI2, SVM::INTER, SVM::RBF). The color depicts the class with max score.
Bright means max-score \> 0, dark means max-score \< 0.
![image](pics/SVM_Comparison.png)
*/
enum KernelTypes {
/** Returned by SVM::getKernelType in case when custom kernel has been set */
CUSTOM=-1,
/** Linear kernel. No mapping is done, linear discrimination (or regression) is
done in the original feature space. It is the fastest option. \f$K(x_i, x_j) = x_i^T x_j\f$. */
LINEAR=0,
/** Polynomial kernel:
\f$K(x_i, x_j) = (\gamma x_i^T x_j + coef0)^{degree}, \gamma > 0\f$. */
POLY=1,
/** Radial basis function (RBF), a good choice in most cases.
\f$K(x_i, x_j) = e^{-\gamma ||x_i - x_j||^2}, \gamma > 0\f$. */
RBF=2,
/** Sigmoid kernel: \f$K(x_i, x_j) = \tanh(\gamma x_i^T x_j + coef0)\f$. */
SIGMOID=3,
/** Exponential Chi2 kernel, similar to the RBF kernel:
\f$K(x_i, x_j) = e^{-\gamma \chi^2(x_i,x_j)}, \chi^2(x_i,x_j) = (x_i-x_j)^2/(x_i+x_j), \gamma > 0\f$. */
CHI2=4,
/** Histogram intersection kernel. A fast kernel. \f$K(x_i, x_j) = min(x_i,x_j)\f$. */
INTER=5
};
//! %SVM params type
enum ParamTypes {
C=0,
GAMMA=1,
P=2,
NU=3,
COEF=4,
DEGREE=5
};
/** @brief Trains an %SVM with optimal parameters.
@param data the training data that can be constructed using TrainData::create or
TrainData::loadFromCSV.
@param kFold Cross-validation parameter. The training set is divided into kFold subsets. One
subset is used to test the model, the others form the train set. So, the %SVM algorithm is
executed kFold times.
@param Cgrid grid for C
@param gammaGrid grid for gamma
@param pGrid grid for p
@param nuGrid grid for nu
@param coeffGrid grid for coeff
@param degreeGrid grid for degree
@param balanced If true and the problem is 2-class classification then the method creates more
balanced cross-validation subsets that is proportions between classes in subsets are close
to such proportion in the whole train dataset.
The method trains the %SVM model automatically by choosing the optimal parameters C, gamma, p,
nu, coef0, degree. Parameters are considered optimal when the cross-validation
estimate of the test set error is minimal.
If there is no need to optimize a parameter, the corresponding grid step should be set to any
value less than or equal to 1. For example, to avoid optimization in gamma, set `gammaGrid.step
= 0`, `gammaGrid.minVal`, `gamma_grid.maxVal` as arbitrary numbers. In this case, the value
`Gamma` is taken for gamma.
And, finally, if the optimization in a parameter is required but the corresponding grid is
unknown, you may call the function SVM::getDefaultGrid. To generate a grid, for example, for
gamma, call `SVM::getDefaultGrid(SVM::GAMMA)`.
This function works for the classification (SVM::C_SVC or SVM::NU_SVC) as well as for the
regression (SVM::EPS_SVR or SVM::NU_SVR). If it is SVM::ONE_CLASS, no optimization is made and
the usual %SVM with parameters specified in params is executed.
*/
virtual bool trainAuto( const Ptr<TrainData>& data, int kFold = 10,
ParamGrid Cgrid = SVM::getDefaultGrid(SVM::C),
ParamGrid gammaGrid = SVM::getDefaultGrid(SVM::GAMMA),
ParamGrid pGrid = SVM::getDefaultGrid(SVM::P),
ParamGrid nuGrid = SVM::getDefaultGrid(SVM::NU),
ParamGrid coeffGrid = SVM::getDefaultGrid(SVM::COEF),
ParamGrid degreeGrid = SVM::getDefaultGrid(SVM::DEGREE),
bool balanced=false) = 0;
/** @brief Retrieves all the support vectors
The method returns all the support vectors as a floating-point matrix, where support vectors are
stored as matrix rows.
*/
CV_WRAP virtual Mat getSupportVectors() const = 0;
/** @brief Retrieves all the uncompressed support vectors of a linear %SVM
The method returns all the uncompressed support vectors of a linear %SVM that the compressed
support vector, used for prediction, was derived from. They are returned in a floating-point
matrix, where the support vectors are stored as matrix rows.
*/
CV_WRAP Mat getUncompressedSupportVectors() const;
/** @brief Retrieves the decision function
@param i the index of the decision function. If the problem solved is regression, 1-class or
2-class classification, then there will be just one decision function and the index should
always be 0. Otherwise, in the case of N-class classification, there will be \f$N(N-1)/2\f$
decision functions.
@param alpha the optional output vector for weights, corresponding to different support vectors.
In the case of linear %SVM all the alpha's will be 1's.
@param svidx the optional output vector of indices of support vectors within the matrix of
support vectors (which can be retrieved by SVM::getSupportVectors). In the case of linear
%SVM each decision function consists of a single "compressed" support vector.
The method returns rho parameter of the decision function, a scalar subtracted from the weighted
sum of kernel responses.
*/
CV_WRAP virtual double getDecisionFunction(int i, OutputArray alpha, OutputArray svidx) const = 0;
/** @brief Generates a grid for %SVM parameters.
@param param_id %SVM parameters IDs that must be one of the SVM::ParamTypes. The grid is
generated for the parameter with this ID.
The function generates a grid for the specified parameter of the %SVM algorithm. The grid may be
passed to the function SVM::trainAuto.
*/
static ParamGrid getDefaultGrid( int param_id );
/** Creates empty model.
Use StatModel::train to train the model. Since %SVM has several parameters, you may want to
find the best parameters for your problem, it can be done with SVM::trainAuto. */
CV_WRAP static Ptr<SVM> create();
/** @brief Loads and creates a serialized svm from a file
*
* Use SVM::save to serialize and store an SVM to disk.
* Load the SVM from this file again, by calling this function with the path to the file.
*
* @param filepath path to serialized svm
*/
CV_WRAP static Ptr<SVM> load(const String& filepath);
};
/****************************************************************************************\
* Expectation - Maximization *
\****************************************************************************************/
/** @brief The class implements the Expectation Maximization algorithm.
@sa @ref ml_intro_em
*/
class CV_EXPORTS_W EM : public StatModel
{
public:
//! Type of covariation matrices
enum Types {
/** A scaled identity matrix \f$\mu_k * I\f$. There is the only
parameter \f$\mu_k\f$ to be estimated for each matrix. The option may be used in special cases,
when the constraint is relevant, or as a first step in the optimization (for example in case
when the data is preprocessed with PCA). The results of such preliminary estimation may be
passed again to the optimization procedure, this time with
covMatType=EM::COV_MAT_DIAGONAL. */
COV_MAT_SPHERICAL=0,
/** A diagonal matrix with positive diagonal elements. The number of
free parameters is d for each matrix. This is most commonly used option yielding good
estimation results. */
COV_MAT_DIAGONAL=1,
/** A symmetric positively defined matrix. The number of free
parameters in each matrix is about \f$d^2/2\f$. It is not recommended to use this option, unless
there is pretty accurate initial estimation of the parameters and/or a huge number of
training samples. */
COV_MAT_GENERIC=2,
COV_MAT_DEFAULT=COV_MAT_DIAGONAL
};
//! Default parameters
enum {DEFAULT_NCLUSTERS=5, DEFAULT_MAX_ITERS=100};
//! The initial step
enum {START_E_STEP=1, START_M_STEP=2, START_AUTO_STEP=0};
/** The number of mixture components in the Gaussian mixture model.
Default value of the parameter is EM::DEFAULT_NCLUSTERS=5. Some of %EM implementation could
determine the optimal number of mixtures within a specified value range, but that is not the
case in ML yet. */
/** @see setClustersNumber */
CV_WRAP virtual int getClustersNumber() const = 0;
/** @copybrief getClustersNumber @see getClustersNumber */
CV_WRAP virtual void setClustersNumber(int val) = 0;
/** Constraint on covariance matrices which defines type of matrices.
See EM::Types. */
/** @see setCovarianceMatrixType */
CV_WRAP virtual int getCovarianceMatrixType() const = 0;
/** @copybrief getCovarianceMatrixType @see getCovarianceMatrixType */
CV_WRAP virtual void setCovarianceMatrixType(int val) = 0;
/** The termination criteria of the %EM algorithm.
The %EM algorithm can be terminated by the number of iterations termCrit.maxCount (number of
M-steps) or when relative change of likelihood logarithm is less than termCrit.epsilon. Default
maximum number of iterations is EM::DEFAULT_MAX_ITERS=100. */
/** @see setTermCriteria */
CV_WRAP virtual TermCriteria getTermCriteria() const = 0;
/** @copybrief getTermCriteria @see getTermCriteria */
CV_WRAP virtual void setTermCriteria(const TermCriteria &val) = 0;
/** @brief Returns weights of the mixtures
Returns vector with the number of elements equal to the number of mixtures.
*/
CV_WRAP virtual Mat getWeights() const = 0;
/** @brief Returns the cluster centers (means of the Gaussian mixture)
Returns matrix with the number of rows equal to the number of mixtures and number of columns
equal to the space dimensionality.
*/
CV_WRAP virtual Mat getMeans() const = 0;
/** @brief Returns covariation matrices
Returns vector of covariation matrices. Number of matrices is the number of gaussian mixtures,
each matrix is a square floating-point matrix NxN, where N is the space dimensionality.
*/
CV_WRAP virtual void getCovs(CV_OUT std::vector<Mat>& covs) const = 0;
/** @brief Returns a likelihood logarithm value and an index of the most probable mixture component
for the given sample.
@param sample A sample for classification. It should be a one-channel matrix of
\f$1 \times dims\f$ or \f$dims \times 1\f$ size.
@param probs Optional output matrix that contains posterior probabilities of each component
given the sample. It has \f$1 \times nclusters\f$ size and CV_64FC1 type.
The method returns a two-element double vector. Zero element is a likelihood logarithm value for
the sample. First element is an index of the most probable mixture component for the given
sample.
*/
CV_WRAP virtual Vec2d predict2(InputArray sample, OutputArray probs) const = 0;
/** @brief Estimate the Gaussian mixture parameters from a samples set.
This variation starts with Expectation step. Initial values of the model parameters will be
estimated by the k-means algorithm.
Unlike many of the ML models, %EM is an unsupervised learning algorithm and it does not take
responses (class labels or function values) as input. Instead, it computes the *Maximum
Likelihood Estimate* of the Gaussian mixture parameters from an input sample set, stores all the
parameters inside the structure: \f$p_{i,k}\f$ in probs, \f$a_k\f$ in means , \f$S_k\f$ in
covs[k], \f$\pi_k\f$ in weights , and optionally computes the output "class label" for each
sample: \f$\texttt{labels}_i=\texttt{arg max}_k(p_{i,k}), i=1..N\f$ (indices of the most
probable mixture component for each sample).
The trained model can be used further for prediction, just like any other classifier. The
trained model is similar to the NormalBayesClassifier.
@param samples Samples from which the Gaussian mixture model will be estimated. It should be a
one-channel matrix, each row of which is a sample. If the matrix does not have CV_64F type
it will be converted to the inner matrix of such type for the further computing.
@param logLikelihoods The optional output matrix that contains a likelihood logarithm value for
each sample. It has \f$nsamples \times 1\f$ size and CV_64FC1 type.
@param labels The optional output "class label" for each sample:
\f$\texttt{labels}_i=\texttt{arg max}_k(p_{i,k}), i=1..N\f$ (indices of the most probable
mixture component for each sample). It has \f$nsamples \times 1\f$ size and CV_32SC1 type.
@param probs The optional output matrix that contains posterior probabilities of each Gaussian
mixture component given the each sample. It has \f$nsamples \times nclusters\f$ size and
CV_64FC1 type.
*/
CV_WRAP virtual bool trainEM(InputArray samples,
OutputArray logLikelihoods=noArray(),
OutputArray labels=noArray(),
OutputArray probs=noArray()) = 0;
/** @brief Estimate the Gaussian mixture parameters from a samples set.
This variation starts with Expectation step. You need to provide initial means \f$a_k\f$ of
mixture components. Optionally you can pass initial weights \f$\pi_k\f$ and covariance matrices
\f$S_k\f$ of mixture components.
@param samples Samples from which the Gaussian mixture model will be estimated. It should be a
one-channel matrix, each row of which is a sample. If the matrix does not have CV_64F type
it will be converted to the inner matrix of such type for the further computing.
@param means0 Initial means \f$a_k\f$ of mixture components. It is a one-channel matrix of
\f$nclusters \times dims\f$ size. If the matrix does not have CV_64F type it will be
converted to the inner matrix of such type for the further computing.
@param covs0 The vector of initial covariance matrices \f$S_k\f$ of mixture components. Each of
covariance matrices is a one-channel matrix of \f$dims \times dims\f$ size. If the matrices
do not have CV_64F type they will be converted to the inner matrices of such type for the
further computing.
@param weights0 Initial weights \f$\pi_k\f$ of mixture components. It should be a one-channel
floating-point matrix with \f$1 \times nclusters\f$ or \f$nclusters \times 1\f$ size.
@param logLikelihoods The optional output matrix that contains a likelihood logarithm value for
each sample. It has \f$nsamples \times 1\f$ size and CV_64FC1 type.
@param labels The optional output "class label" for each sample:
\f$\texttt{labels}_i=\texttt{arg max}_k(p_{i,k}), i=1..N\f$ (indices of the most probable
mixture component for each sample). It has \f$nsamples \times 1\f$ size and CV_32SC1 type.
@param probs The optional output matrix that contains posterior probabilities of each Gaussian
mixture component given the each sample. It has \f$nsamples \times nclusters\f$ size and
CV_64FC1 type.
*/
CV_WRAP virtual bool trainE(InputArray samples, InputArray means0,
InputArray covs0=noArray(),
InputArray weights0=noArray(),
OutputArray logLikelihoods=noArray(),
OutputArray labels=noArray(),
OutputArray probs=noArray()) = 0;
/** @brief Estimate the Gaussian mixture parameters from a samples set.
This variation starts with Maximization step. You need to provide initial probabilities
\f$p_{i,k}\f$ to use this option.
@param samples Samples from which the Gaussian mixture model will be estimated. It should be a
one-channel matrix, each row of which is a sample. If the matrix does not have CV_64F type
it will be converted to the inner matrix of such type for the further computing.
@param probs0
@param logLikelihoods The optional output matrix that contains a likelihood logarithm value for
each sample. It has \f$nsamples \times 1\f$ size and CV_64FC1 type.
@param labels The optional output "class label" for each sample:
\f$\texttt{labels}_i=\texttt{arg max}_k(p_{i,k}), i=1..N\f$ (indices of the most probable
mixture component for each sample). It has \f$nsamples \times 1\f$ size and CV_32SC1 type.
@param probs The optional output matrix that contains posterior probabilities of each Gaussian
mixture component given the each sample. It has \f$nsamples \times nclusters\f$ size and
CV_64FC1 type.
*/
CV_WRAP virtual bool trainM(InputArray samples, InputArray probs0,
OutputArray logLikelihoods=noArray(),
OutputArray labels=noArray(),
OutputArray probs=noArray()) = 0;
/** Creates empty %EM model.
The model should be trained then using StatModel::train(traindata, flags) method. Alternatively, you
can use one of the EM::train\* methods or load it from file using Algorithm::load\<EM\>(filename).
*/
CV_WRAP static Ptr<EM> create();
};
/****************************************************************************************\
* Decision Tree *
\****************************************************************************************/
/** @brief The class represents a single decision tree or a collection of decision trees.
The current public interface of the class allows user to train only a single decision tree, however
the class is capable of storing multiple decision trees and using them for prediction (by summing
responses or using a voting schemes), and the derived from DTrees classes (such as RTrees and Boost)
use this capability to implement decision tree ensembles.
@sa @ref ml_intro_trees
*/
class CV_EXPORTS_W DTrees : public StatModel
{
public:
/** Predict options */
enum Flags { PREDICT_AUTO=0, PREDICT_SUM=(1<<8), PREDICT_MAX_VOTE=(2<<8), PREDICT_MASK=(3<<8) };
/** Cluster possible values of a categorical variable into K\<=maxCategories clusters to
find a suboptimal split.
If a discrete variable, on which the training procedure tries to make a split, takes more than
maxCategories values, the precise best subset estimation may take a very long time because the
algorithm is exponential. Instead, many decision trees engines (including our implementation)
try to find sub-optimal split in this case by clustering all the samples into maxCategories
clusters that is some categories are merged together. The clustering is applied only in n \>
2-class classification problems for categorical variables with N \> max_categories possible
values. In case of regression and 2-class classification the optimal split can be found
efficiently without employing clustering, thus the parameter is not used in these cases.
Default value is 10.*/
/** @see setMaxCategories */
CV_WRAP virtual int getMaxCategories() const = 0;
/** @copybrief getMaxCategories @see getMaxCategories */
CV_WRAP virtual void setMaxCategories(int val) = 0;
/** The maximum possible depth of the tree.
That is the training algorithms attempts to split a node while its depth is less than maxDepth.
The root node has zero depth. The actual depth may be smaller if the other termination criteria
are met (see the outline of the training procedure @ref ml_intro_trees "here"), and/or if the
tree is pruned. Default value is INT_MAX.*/
/** @see setMaxDepth */
CV_WRAP virtual int getMaxDepth() const = 0;
/** @copybrief getMaxDepth @see getMaxDepth */
CV_WRAP virtual void setMaxDepth(int val) = 0;
/** If the number of samples in a node is less than this parameter then the node will not be split.
Default value is 10.*/
/** @see setMinSampleCount */
CV_WRAP virtual int getMinSampleCount() const = 0;
/** @copybrief getMinSampleCount @see getMinSampleCount */
CV_WRAP virtual void setMinSampleCount(int val) = 0;
/** If CVFolds \> 1 then algorithms prunes the built decision tree using K-fold
cross-validation procedure where K is equal to CVFolds.
Default value is 10.*/
/** @see setCVFolds */
CV_WRAP virtual int getCVFolds() const = 0;
/** @copybrief getCVFolds @see getCVFolds */
CV_WRAP virtual void setCVFolds(int val) = 0;
/** If true then surrogate splits will be built.
These splits allow to work with missing data and compute variable importance correctly.
Default value is false.
@note currently it's not implemented.*/
/** @see setUseSurrogates */
CV_WRAP virtual bool getUseSurrogates() const = 0;
/** @copybrief getUseSurrogates @see getUseSurrogates */
CV_WRAP virtual void setUseSurrogates(bool val) = 0;
/** If true then a pruning will be harsher.
This will make a tree more compact and more resistant to the training data noise but a bit less
accurate. Default value is true.*/
/** @see setUse1SERule */
CV_WRAP virtual bool getUse1SERule() const = 0;
/** @copybrief getUse1SERule @see getUse1SERule */
CV_WRAP virtual void setUse1SERule(bool val) = 0;
/** If true then pruned branches are physically removed from the tree.
Otherwise they are retained and it is possible to get results from the original unpruned (or
pruned less aggressively) tree. Default value is true.*/
/** @see setTruncatePrunedTree */
CV_WRAP virtual bool getTruncatePrunedTree() const = 0;
/** @copybrief getTruncatePrunedTree @see getTruncatePrunedTree */
CV_WRAP virtual void setTruncatePrunedTree(bool val) = 0;
/** Termination criteria for regression trees.
If all absolute differences between an estimated value in a node and values of train samples
in this node are less than this parameter then the node will not be split further. Default
value is 0.01f*/
/** @see setRegressionAccuracy */
CV_WRAP virtual float getRegressionAccuracy() const = 0;
/** @copybrief getRegressionAccuracy @see getRegressionAccuracy */
CV_WRAP virtual void setRegressionAccuracy(float val) = 0;
/** @brief The array of a priori class probabilities, sorted by the class label value.
The parameter can be used to tune the decision tree preferences toward a certain class. For
example, if you want to detect some rare anomaly occurrence, the training base will likely
contain much more normal cases than anomalies, so a very good classification performance
will be achieved just by considering every case as normal. To avoid this, the priors can be
specified, where the anomaly probability is artificially increased (up to 0.5 or even
greater), so the weight of the misclassified anomalies becomes much bigger, and the tree is
adjusted properly.
You can also think about this parameter as weights of prediction categories which determine
relative weights that you give to misclassification. That is, if the weight of the first
category is 1 and the weight of the second category is 10, then each mistake in predicting
the second category is equivalent to making 10 mistakes in predicting the first category.
Default value is empty Mat.*/
/** @see setPriors */
CV_WRAP virtual cv::Mat getPriors() const = 0;
/** @copybrief getPriors @see getPriors */
CV_WRAP virtual void setPriors(const cv::Mat &val) = 0;
/** @brief The class represents a decision tree node.
*/
class CV_EXPORTS Node
{
public:
Node();
double value; //!< Value at the node: a class label in case of classification or estimated
//!< function value in case of regression.
int classIdx; //!< Class index normalized to 0..class_count-1 range and assigned to the
//!< node. It is used internally in classification trees and tree ensembles.
int parent; //!< Index of the parent node
int left; //!< Index of the left child node
int right; //!< Index of right child node
int defaultDir; //!< Default direction where to go (-1: left or +1: right). It helps in the
//!< case of missing values.
int split; //!< Index of the first split
};
/** @brief The class represents split in a decision tree.
*/
class CV_EXPORTS Split
{
public:
Split();
int varIdx; //!< Index of variable on which the split is created.
bool inversed; //!< If true, then the inverse split rule is used (i.e. left and right
//!< branches are exchanged in the rule expressions below).
float quality; //!< The split quality, a positive number. It is used to choose the best split.
int next; //!< Index of the next split in the list of splits for the node
float c; /**< The threshold value in case of split on an ordered variable.
The rule is:
@code{.none}
if var_value < c
then next_node <- left
else next_node <- right
@endcode */
int subsetOfs; /**< Offset of the bitset used by the split on a categorical variable.
The rule is:
@code{.none}
if bitset[var_value] == 1
then next_node <- left
else next_node <- right
@endcode */
};
/** @brief Returns indices of root nodes
*/
virtual const std::vector<int>& getRoots() const = 0;
/** @brief Returns all the nodes
all the node indices are indices in the returned vector
*/
virtual const std::vector<Node>& getNodes() const = 0;
/** @brief Returns all the splits
all the split indices are indices in the returned vector
*/
virtual const std::vector<Split>& getSplits() const = 0;
/** @brief Returns all the bitsets for categorical splits
Split::subsetOfs is an offset in the returned vector
*/
virtual const std::vector<int>& getSubsets() const = 0;
/** @brief Creates the empty model
The static method creates empty decision tree with the specified parameters. It should be then
trained using train method (see StatModel::train). Alternatively, you can load the model from
file using Algorithm::load\<DTrees\>(filename).
*/
CV_WRAP static Ptr<DTrees> create();
};
/****************************************************************************************\
* Random Trees Classifier *
\****************************************************************************************/
/** @brief The class implements the random forest predictor.
@sa @ref ml_intro_rtrees
*/
class CV_EXPORTS_W RTrees : public DTrees
{
public:
/** If true then variable importance will be calculated and then it can be retrieved by RTrees::getVarImportance.
Default value is false.*/
/** @see setCalculateVarImportance */
CV_WRAP virtual bool getCalculateVarImportance() const = 0;
/** @copybrief getCalculateVarImportance @see getCalculateVarImportance */
CV_WRAP virtual void setCalculateVarImportance(bool val) = 0;
/** The size of the randomly selected subset of features at each tree node and that are used
to find the best split(s).
If you set it to 0 then the size will be set to the square root of the total number of
features. Default value is 0.*/
/** @see setActiveVarCount */
CV_WRAP virtual int getActiveVarCount() const = 0;
/** @copybrief getActiveVarCount @see getActiveVarCount */
CV_WRAP virtual void setActiveVarCount(int val) = 0;
/** The termination criteria that specifies when the training algorithm stops.
Either when the specified number of trees is trained and added to the ensemble or when
sufficient accuracy (measured as OOB error) is achieved. Typically the more trees you have the
better the accuracy. However, the improvement in accuracy generally diminishes and asymptotes
pass a certain number of trees. Also to keep in mind, the number of tree increases the
prediction time linearly. Default value is TermCriteria(TermCriteria::MAX_ITERS +
TermCriteria::EPS, 50, 0.1)*/
/** @see setTermCriteria */
CV_WRAP virtual TermCriteria getTermCriteria() const = 0;
/** @copybrief getTermCriteria @see getTermCriteria */
CV_WRAP virtual void setTermCriteria(const TermCriteria &val) = 0;
/** Returns the variable importance array.
The method returns the variable importance vector, computed at the training stage when
CalculateVarImportance is set to true. If this flag was set to false, the empty matrix is
returned.
*/
CV_WRAP virtual Mat getVarImportance() const = 0;
/** Creates the empty model.
Use StatModel::train to train the model, StatModel::train to create and train the model,
Algorithm::load to load the pre-trained model.
*/
CV_WRAP static Ptr<RTrees> create();
};
/****************************************************************************************\
* Boosted tree classifier *
\****************************************************************************************/
/** @brief Boosted tree classifier derived from DTrees
@sa @ref ml_intro_boost
*/
class CV_EXPORTS_W Boost : public DTrees
{
public:
/** Type of the boosting algorithm.
See Boost::Types. Default value is Boost::REAL. */
/** @see setBoostType */
CV_WRAP virtual int getBoostType() const = 0;
/** @copybrief getBoostType @see getBoostType */
CV_WRAP virtual void setBoostType(int val) = 0;
/** The number of weak classifiers.
Default value is 100. */
/** @see setWeakCount */
CV_WRAP virtual int getWeakCount() const = 0;
/** @copybrief getWeakCount @see getWeakCount */
CV_WRAP virtual void setWeakCount(int val) = 0;
/** A threshold between 0 and 1 used to save computational time.
Samples with summary weight \f$\leq 1 - weight_trim_rate\f$ do not participate in the *next*
iteration of training. Set this parameter to 0 to turn off this functionality. Default value is 0.95.*/
/** @see setWeightTrimRate */
CV_WRAP virtual double getWeightTrimRate() const = 0;
/** @copybrief getWeightTrimRate @see getWeightTrimRate */
CV_WRAP virtual void setWeightTrimRate(double val) = 0;
/** Boosting type.
Gentle AdaBoost and Real AdaBoost are often the preferable choices. */
enum Types {
DISCRETE=0, //!< Discrete AdaBoost.
REAL=1, //!< Real AdaBoost. It is a technique that utilizes confidence-rated predictions
//!< and works well with categorical data.
LOGIT=2, //!< LogitBoost. It can produce good regression fits.
GENTLE=3 //!< Gentle AdaBoost. It puts less weight on outlier data points and for that
//!<reason is often good with regression data.
};
/** Creates the empty model.
Use StatModel::train to train the model, Algorithm::load\<Boost\>(filename) to load the pre-trained model. */
CV_WRAP static Ptr<Boost> create();
};
/****************************************************************************************\
* Gradient Boosted Trees *
\****************************************************************************************/
/*class CV_EXPORTS_W GBTrees : public DTrees
{
public:
struct CV_EXPORTS_W_MAP Params : public DTrees::Params
{
CV_PROP_RW int weakCount;
CV_PROP_RW int lossFunctionType;
CV_PROP_RW float subsamplePortion;
CV_PROP_RW float shrinkage;
Params();
Params( int lossFunctionType, int weakCount, float shrinkage,
float subsamplePortion, int maxDepth, bool useSurrogates );
};
enum {SQUARED_LOSS=0, ABSOLUTE_LOSS, HUBER_LOSS=3, DEVIANCE_LOSS};
virtual void setK(int k) = 0;
virtual float predictSerial( InputArray samples,
OutputArray weakResponses, int flags) const = 0;
static Ptr<GBTrees> create(const Params& p);
};*/
/****************************************************************************************\
* Artificial Neural Networks (ANN) *
\****************************************************************************************/
/////////////////////////////////// Multi-Layer Perceptrons //////////////////////////////
/** @brief Artificial Neural Networks - Multi-Layer Perceptrons.
Unlike many other models in ML that are constructed and trained at once, in the MLP model these
steps are separated. First, a network with the specified topology is created using the non-default
constructor or the method ANN_MLP::create. All the weights are set to zeros. Then, the network is
trained using a set of input and output vectors. The training procedure can be repeated more than
once, that is, the weights can be adjusted based on the new training data.
Additional flags for StatModel::train are available: ANN_MLP::TrainFlags.
@sa @ref ml_intro_ann
*/
class CV_EXPORTS_W ANN_MLP : public StatModel
{
public:
/** Available training methods */
enum TrainingMethods {
BACKPROP=0, //!< The back-propagation algorithm.
RPROP=1 //!< The RPROP algorithm. See @cite RPROP93 for details.
};
/** Sets training method and common parameters.
@param method Default value is ANN_MLP::RPROP. See ANN_MLP::TrainingMethods.
@param param1 passed to setRpropDW0 for ANN_MLP::RPROP and to setBackpropWeightScale for ANN_MLP::BACKPROP
@param param2 passed to setRpropDWMin for ANN_MLP::RPROP and to setBackpropMomentumScale for ANN_MLP::BACKPROP.
*/
CV_WRAP virtual void setTrainMethod(int method, double param1 = 0, double param2 = 0) = 0;
/** Returns current training method */
CV_WRAP virtual int getTrainMethod() const = 0;
/** Initialize the activation function for each neuron.
Currently the default and the only fully supported activation function is ANN_MLP::SIGMOID_SYM.
@param type The type of activation function. See ANN_MLP::ActivationFunctions.
@param param1 The first parameter of the activation function, \f$\alpha\f$. Default value is 0.
@param param2 The second parameter of the activation function, \f$\beta\f$. Default value is 0.
*/
CV_WRAP virtual void setActivationFunction(int type, double param1 = 0, double param2 = 0) = 0;
/** Integer vector specifying the number of neurons in each layer including the input and output layers.
The very first element specifies the number of elements in the input layer.
The last element - number of elements in the output layer. Default value is empty Mat.
@sa getLayerSizes */
CV_WRAP virtual void setLayerSizes(InputArray _layer_sizes) = 0;
/** Integer vector specifying the number of neurons in each layer including the input and output layers.
The very first element specifies the number of elements in the input layer.
The last element - number of elements in the output layer.
@sa setLayerSizes */
CV_WRAP virtual cv::Mat getLayerSizes() const = 0;
/** Termination criteria of the training algorithm.
You can specify the maximum number of iterations (maxCount) and/or how much the error could
change between the iterations to make the algorithm continue (epsilon). Default value is
TermCriteria(TermCriteria::MAX_ITER + TermCriteria::EPS, 1000, 0.01).*/
/** @see setTermCriteria */
CV_WRAP virtual TermCriteria getTermCriteria() const = 0;
/** @copybrief getTermCriteria @see getTermCriteria */
CV_WRAP virtual void setTermCriteria(TermCriteria val) = 0;
/** BPROP: Strength of the weight gradient term.
The recommended value is about 0.1. Default value is 0.1.*/
/** @see setBackpropWeightScale */
CV_WRAP virtual double getBackpropWeightScale() const = 0;
/** @copybrief getBackpropWeightScale @see getBackpropWeightScale */
CV_WRAP virtual void setBackpropWeightScale(double val) = 0;
/** BPROP: Strength of the momentum term (the difference between weights on the 2 previous iterations).
This parameter provides some inertia to smooth the random fluctuations of the weights. It can
vary from 0 (the feature is disabled) to 1 and beyond. The value 0.1 or so is good enough.
Default value is 0.1.*/
/** @see setBackpropMomentumScale */
CV_WRAP virtual double getBackpropMomentumScale() const = 0;
/** @copybrief getBackpropMomentumScale @see getBackpropMomentumScale */
CV_WRAP virtual void setBackpropMomentumScale(double val) = 0;
/** RPROP: Initial value \f$\Delta_0\f$ of update-values \f$\Delta_{ij}\f$.
Default value is 0.1.*/
/** @see setRpropDW0 */
CV_WRAP virtual double getRpropDW0() const = 0;
/** @copybrief getRpropDW0 @see getRpropDW0 */
CV_WRAP virtual void setRpropDW0(double val) = 0;
/** RPROP: Increase factor \f$\eta^+\f$.
It must be \>1. Default value is 1.2.*/
/** @see setRpropDWPlus */
CV_WRAP virtual double getRpropDWPlus() const = 0;
/** @copybrief getRpropDWPlus @see getRpropDWPlus */
CV_WRAP virtual void setRpropDWPlus(double val) = 0;
/** RPROP: Decrease factor \f$\eta^-\f$.
It must be \<1. Default value is 0.5.*/
/** @see setRpropDWMinus */
CV_WRAP virtual double getRpropDWMinus() const = 0;
/** @copybrief getRpropDWMinus @see getRpropDWMinus */
CV_WRAP virtual void setRpropDWMinus(double val) = 0;
/** RPROP: Update-values lower limit \f$\Delta_{min}\f$.
It must be positive. Default value is FLT_EPSILON.*/
/** @see setRpropDWMin */
CV_WRAP virtual double getRpropDWMin() const = 0;
/** @copybrief getRpropDWMin @see getRpropDWMin */
CV_WRAP virtual void setRpropDWMin(double val) = 0;
/** RPROP: Update-values upper limit \f$\Delta_{max}\f$.
It must be \>1. Default value is 50.*/
/** @see setRpropDWMax */
CV_WRAP virtual double getRpropDWMax() const = 0;
/** @copybrief getRpropDWMax @see getRpropDWMax */
CV_WRAP virtual void setRpropDWMax(double val) = 0;
/** possible activation functions */
enum ActivationFunctions {
/** Identity function: \f$f(x)=x\f$ */
IDENTITY = 0,
/** Symmetrical sigmoid: \f$f(x)=\beta*(1-e^{-\alpha x})/(1+e^{-\alpha x}\f$
@note
If you are using the default sigmoid activation function with the default parameter values
fparam1=0 and fparam2=0 then the function used is y = 1.7159\*tanh(2/3 \* x), so the output
will range from [-1.7159, 1.7159], instead of [0,1].*/
SIGMOID_SYM = 1,
/** Gaussian function: \f$f(x)=\beta e^{-\alpha x*x}\f$ */
GAUSSIAN = 2
};
/** Train options */
enum TrainFlags {
/** Update the network weights, rather than compute them from scratch. In the latter case
the weights are initialized using the Nguyen-Widrow algorithm. */
UPDATE_WEIGHTS = 1,
/** Do not normalize the input vectors. If this flag is not set, the training algorithm
normalizes each input feature independently, shifting its mean value to 0 and making the
standard deviation equal to 1. If the network is assumed to be updated frequently, the new
training data could be much different from original one. In this case, you should take care
of proper normalization. */
NO_INPUT_SCALE = 2,
/** Do not normalize the output vectors. If the flag is not set, the training algorithm
normalizes each output feature independently, by transforming it to the certain range
depending on the used activation function. */
NO_OUTPUT_SCALE = 4
};
CV_WRAP virtual Mat getWeights(int layerIdx) const = 0;
/** @brief Creates empty model
Use StatModel::train to train the model, Algorithm::load\<ANN_MLP\>(filename) to load the pre-trained model.
Note that the train method has optional flags: ANN_MLP::TrainFlags.
*/
CV_WRAP static Ptr<ANN_MLP> create();
/** @brief Loads and creates a serialized ANN from a file
*
* Use ANN::save to serialize and store an ANN to disk.
* Load the ANN from this file again, by calling this function with the path to the file.
*
* @param filepath path to serialized ANN
*/
CV_WRAP static Ptr<ANN_MLP> load(const String& filepath);
};
/****************************************************************************************\
* Logistic Regression *
\****************************************************************************************/
/** @brief Implements Logistic Regression classifier.
@sa @ref ml_intro_lr
*/
class CV_EXPORTS_W LogisticRegression : public StatModel
{
public:
/** Learning rate. */
/** @see setLearningRate */
CV_WRAP virtual double getLearningRate() const = 0;
/** @copybrief getLearningRate @see getLearningRate */
CV_WRAP virtual void setLearningRate(double val) = 0;
/** Number of iterations. */
/** @see setIterations */
CV_WRAP virtual int getIterations() const = 0;
/** @copybrief getIterations @see getIterations */
CV_WRAP virtual void setIterations(int val) = 0;
/** Kind of regularization to be applied. See LogisticRegression::RegKinds. */
/** @see setRegularization */
CV_WRAP virtual int getRegularization() const = 0;
/** @copybrief getRegularization @see getRegularization */
CV_WRAP virtual void setRegularization(int val) = 0;
/** Kind of training method used. See LogisticRegression::Methods. */
/** @see setTrainMethod */
CV_WRAP virtual int getTrainMethod() const = 0;
/** @copybrief getTrainMethod @see getTrainMethod */
CV_WRAP virtual void setTrainMethod(int val) = 0;
/** Specifies the number of training samples taken in each step of Mini-Batch Gradient
Descent. Will only be used if using LogisticRegression::MINI_BATCH training algorithm. It
has to take values less than the total number of training samples. */
/** @see setMiniBatchSize */
CV_WRAP virtual int getMiniBatchSize() const = 0;
/** @copybrief getMiniBatchSize @see getMiniBatchSize */
CV_WRAP virtual void setMiniBatchSize(int val) = 0;
/** Termination criteria of the algorithm. */
/** @see setTermCriteria */
CV_WRAP virtual TermCriteria getTermCriteria() const = 0;
/** @copybrief getTermCriteria @see getTermCriteria */
CV_WRAP virtual void setTermCriteria(TermCriteria val) = 0;
//! Regularization kinds
enum RegKinds {
REG_DISABLE = -1, //!< Regularization disabled
REG_L1 = 0, //!< %L1 norm
REG_L2 = 1 //!< %L2 norm
};
//! Training methods
enum Methods {
BATCH = 0,
MINI_BATCH = 1 //!< Set MiniBatchSize to a positive integer when using this method.
};
/** @brief Predicts responses for input samples and returns a float type.
@param samples The input data for the prediction algorithm. Matrix [m x n], where each row
contains variables (features) of one object being classified. Should have data type CV_32F.
@param results Predicted labels as a column matrix of type CV_32S.
@param flags Not used.
*/
CV_WRAP virtual float predict( InputArray samples, OutputArray results=noArray(), int flags=0 ) const = 0;
/** @brief This function returns the trained paramters arranged across rows.
For a two class classifcation problem, it returns a row matrix. It returns learnt paramters of
the Logistic Regression as a matrix of type CV_32F.
*/
CV_WRAP virtual Mat get_learnt_thetas() const = 0;
/** @brief Creates empty model.
Creates Logistic Regression model with parameters given.
*/
CV_WRAP static Ptr<LogisticRegression> create();
};
/****************************************************************************************\
* Stochastic Gradient Descent SVM Classifier *
\****************************************************************************************/
/*!
@brief Stochastic Gradient Descent SVM classifier
SVMSGD provides a fast and easy-to-use implementation of the SVM classifier using the Stochastic Gradient Descent approach,
as presented in @cite bottou2010large.
The classifier has following parameters:
- model type,
- margin type,
- margin regularization (\f$\lambda\f$),
- initial step size (\f$\gamma_0\f$),
- step decreasing power (\f$c\f$),
- and termination criteria.
The model type may have one of the following values: \ref SGD and \ref ASGD.
- \ref SGD is the classic version of SVMSGD classifier: every next step is calculated by the formula
\f[w_{t+1} = w_t - \gamma(t) \frac{dQ_i}{dw} |_{w = w_t}\f]
where
- \f$w_t\f$ is the weights vector for decision function at step \f$t\f$,
- \f$\gamma(t)\f$ is the step size of model parameters at the iteration \f$t\f$, it is decreased on each step by the formula
\f$\gamma(t) = \gamma_0 (1 + \lambda \gamma_0 t) ^ {-c}\f$
- \f$Q_i\f$ is the target functional from SVM task for sample with number \f$i\f$, this sample is chosen stochastically on each step of the algorithm.
- \ref ASGD is Average Stochastic Gradient Descent SVM Classifier. ASGD classifier averages weights vector on each step of algorithm by the formula
\f$\widehat{w}_{t+1} = \frac{t}{1+t}\widehat{w}_{t} + \frac{1}{1+t}w_{t+1}\f$
The recommended model type is ASGD (following @cite bottou2010large).
The margin type may have one of the following values: \ref SOFT_MARGIN or \ref HARD_MARGIN.
- You should use \ref HARD_MARGIN type, if you have linearly separable sets.
- You should use \ref SOFT_MARGIN type, if you have non-linearly separable sets or sets with outliers.
- In the general case (if you know nothing about linear separability of your sets), use SOFT_MARGIN.
The other parameters may be described as follows:
- Margin regularization parameter is responsible for weights decreasing at each step and for the strength of restrictions on outliers
(the less the parameter, the less probability that an outlier will be ignored).
Recommended value for SGD model is 0.0001, for ASGD model is 0.00001.
- Initial step size parameter is the initial value for the step size \f$\gamma(t)\f$.
You will have to find the best initial step for your problem.
- Step decreasing power is the power parameter for \f$\gamma(t)\f$ decreasing by the formula, mentioned above.
Recommended value for SGD model is 1, for ASGD model is 0.75.
- Termination criteria can be TermCriteria::COUNT, TermCriteria::EPS or TermCriteria::COUNT + TermCriteria::EPS.
You will have to find the best termination criteria for your problem.
Note that the parameters margin regularization, initial step size, and step decreasing power should be positive.
To use SVMSGD algorithm do as follows:
- first, create the SVMSGD object. The algoorithm will set optimal parameters by default, but you can set your own parameters via functions setSvmsgdType(),
setMarginType(), setMarginRegularization(), setInitialStepSize(), and setStepDecreasingPower().
- then the SVM model can be trained using the train features and the correspondent labels by the method train().
- after that, the label of a new feature vector can be predicted using the method predict().
@code
// Create empty object
cv::Ptr<SVMSGD> svmsgd = SVMSGD::create();
// Train the Stochastic Gradient Descent SVM
svmsgd->train(trainData);
// Predict labels for the new samples
svmsgd->predict(samples, responses);
@endcode
*/
class CV_EXPORTS_W SVMSGD : public cv::ml::StatModel
{
public:
/** SVMSGD type.
ASGD is often the preferable choice. */
enum SvmsgdType
{
SGD, //!< Stochastic Gradient Descent
ASGD //!< Average Stochastic Gradient Descent
};
/** Margin type.*/
enum MarginType
{
SOFT_MARGIN, //!< General case, suits to the case of non-linearly separable sets, allows outliers.
HARD_MARGIN //!< More accurate for the case of linearly separable sets.
};
/**
* @return the weights of the trained model (decision function f(x) = weights * x + shift).
*/
CV_WRAP virtual Mat getWeights() = 0;
/**
* @return the shift of the trained model (decision function f(x) = weights * x + shift).
*/
CV_WRAP virtual float getShift() = 0;
/** @brief Creates empty model.
* Use StatModel::train to train the model. Since %SVMSGD has several parameters, you may want to
* find the best parameters for your problem or use setOptimalParameters() to set some default parameters.
*/
CV_WRAP static Ptr<SVMSGD> create();
/** @brief Function sets optimal parameters values for chosen SVM SGD model.
* @param svmsgdType is the type of SVMSGD classifier.
* @param marginType is the type of margin constraint.
*/
CV_WRAP virtual void setOptimalParameters(int svmsgdType = SVMSGD::ASGD, int marginType = SVMSGD::SOFT_MARGIN) = 0;
/** @brief %Algorithm type, one of SVMSGD::SvmsgdType. */
/** @see setSvmsgdType */
CV_WRAP virtual int getSvmsgdType() const = 0;
/** @copybrief getSvmsgdType @see getSvmsgdType */
CV_WRAP virtual void setSvmsgdType(int svmsgdType) = 0;
/** @brief %Margin type, one of SVMSGD::MarginType. */
/** @see setMarginType */
CV_WRAP virtual int getMarginType() const = 0;
/** @copybrief getMarginType @see getMarginType */
CV_WRAP virtual void setMarginType(int marginType) = 0;
/** @brief Parameter marginRegularization of a %SVMSGD optimization problem. */
/** @see setMarginRegularization */
CV_WRAP virtual float getMarginRegularization() const = 0;
/** @copybrief getMarginRegularization @see getMarginRegularization */
CV_WRAP virtual void setMarginRegularization(float marginRegularization) = 0;
/** @brief Parameter initialStepSize of a %SVMSGD optimization problem. */
/** @see setInitialStepSize */
CV_WRAP virtual float getInitialStepSize() const = 0;
/** @copybrief getInitialStepSize @see getInitialStepSize */
CV_WRAP virtual void setInitialStepSize(float InitialStepSize) = 0;
/** @brief Parameter stepDecreasingPower of a %SVMSGD optimization problem. */
/** @see setStepDecreasingPower */
CV_WRAP virtual float getStepDecreasingPower() const = 0;
/** @copybrief getStepDecreasingPower @see getStepDecreasingPower */
CV_WRAP virtual void setStepDecreasingPower(float stepDecreasingPower) = 0;
/** @brief Termination criteria of the training algorithm.
You can specify the maximum number of iterations (maxCount) and/or how much the error could
change between the iterations to make the algorithm continue (epsilon).*/
/** @see setTermCriteria */
CV_WRAP virtual TermCriteria getTermCriteria() const = 0;
/** @copybrief getTermCriteria @see getTermCriteria */
CV_WRAP virtual void setTermCriteria(const cv::TermCriteria &val) = 0;
};
/****************************************************************************************\
* Auxilary functions declarations *
\****************************************************************************************/
/** @brief Generates _sample_ from multivariate normal distribution
@param mean an average row vector
@param cov symmetric covariation matrix
@param nsamples returned samples count
@param samples returned samples array
*/
CV_EXPORTS void randMVNormal( InputArray mean, InputArray cov, int nsamples, OutputArray samples);
/** @brief Creates test set */
CV_EXPORTS void createConcentricSpheresTestSet( int nsamples, int nfeatures, int nclasses,
OutputArray samples, OutputArray responses);
//! @} ml
}
}
#endif // __cplusplus
#endif // OPENCV_ML_HPP
/* End of file. */
|